Exploring the Visual Anomaly Detection Dataset (Part 2)

Exploring the Visual Anomaly Detection Dataset (Part 2)

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Exploring the Visual Anomaly Detection Dataset (Part 2)
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Join Dr. Mohan Dash, AI Doctor, as he explores MVTec's treasure trove of anomaly detection! Dive into the depths of anomaly detection with exclusive access to MVTec's public dataset.

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#computervision #deeplearning #pytorch #manufacturing #anomalydetection #Mvtec #Industry4 #ai

I am Dr. Mohan Dash (AI Research Engineer). If you like this video please subscribe to the channel: https://www.youtube.com/@Mohankumardash?sub_confirmation=1

All codes are available in the GitHub repo below
Take your manufacturing inspection to the next level! This series explores cutting-edge visual anomaly detection using the popular MVTec dataset and cutting-edge methods from research papers. We leverage the power of PyTorch to build and implement these algorithms, with code provided so you can follow along.

In this series you will learn:

The basics of visual anomaly detection in manufacturing
How to use the Mvtec dataset for training and evaluation
The latest deep learning techniques for anomaly detection
How to implement these methods with PyTorch with clear code explanations
Perfect for:

Engineers who want to improve their quality control ‍️
Researchers are interested in deep learning for anomaly detection
Anyone curious about the future of AI in manufacturing
Stay tuned for the first episode!

PS: Don’t forget to subscribe to learn more about AI and machine learning in action!

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LinkedIn: https://www.linkedin.com/in/balyogi-mohan-dash/
GitHub: https://github.com/mohan696matlab/mvtec_anomalydetection
Google Scholar: https://scholar.google.com/citations?user=jzcIElIAAAAJ&hl=en

YouTube videos that might be of interest to you:

Playlist for the anomaly detection videos: https://www.youtube.com/playlist?list=PLoSULBSCtofdd9Lbp_6uDV0Vqet0afri5

Unsupervised learning: Applied to fault detection in industrial processes: https://www.youtube.com/playlist?list=PLoSULBSCtoffIldbr898SDp5gIqo8XL-t

Explainable AI for error diagnosis: https://www.youtube.com/playlist?list=PLoSULBSCtofenHi097wUw5EuvuwtD1z1P

Bearing fault diagnosis: https://www.youtube.com/playlist?list=PLoSULBSCtofdvdIroXEw4b8aHq1wDiPWY

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